T-WAVE ALTERNANS DETECTION: A MACHINE LEARNING AND DEEP LEARNING APPROACH IN PYTHON
Fecha
2024-06-25
Autores
Título de la revista
ISSN de la revista
Título del volumen
Editor
Universidad Rey Juan Carlos
Resumen
Sudden Cardiac Death (SCD) is a significant global health issue, accounting
for a substantial proportion of cardiovascular disease-related mortality. SCD often
results from ventricular arrhythmias, which can occur without prior warning, making
early detection crucial. One of the promising indicators for predicting SCD is T-
wave alternans (TWA), which are subtle variations (order of ¿V ) in the amplitude
or shape of the T-wave in an electrocardiogram (ECG). Detecting TWA is essential
as it can help identify individuals at high risk of SCD, enabling timely interventions.
In this study, the creation of a comprehensive database by collecting and pre-
processing ECG signals was developed. The preprocessing steps included the
addition of alternans, removal of baseline wander, delineation of the ST-T complex,
heartbeat windowing, ST-T alignment, background subtraction, linear filtering, and
building the signals dataframe. These steps ensured the quality and consistency of
the data used for analysis.
Relevant features were extracted from the preprocessed ECG signals, high-
lighting the Kscore, Valt and the noble cumsum-based feature, to improve the de-
tection accuracy of TWA. Various machine learning algorithms were employed,
including Logistic Regression (LR), Decision Tree (DT), Random Forest (RF), and
Support Vector Machine (SVM), to evaluate their performance in detecting TWA.
Furthermore, we implemented advanced deep learning techniques, specif-
ically Long Short-Term Memory (LSTM) networks and a hybrid CNN-LSTM ar-
chitecture. Our results demonstrated that LSTM networks outperformed other
models, achieving an outstanding accuracy of 94.08%, which is the highest per-
formance reported in the literature for TWA detection.
This research highlights the potential of LSTM networks in improving the early
detection of TWA, thereby contributing to the prevention of SCD. The findings
suggest that incorporating deep learning models, particularly LSTM networks, can
significantly enhance the accuracy and reliability of TWA detection, offering a robust
tool for clinicians in the fight against SCD
Descripción
Trabajo Fin de Grado leído en la Universidad Rey Juan Carlos en el curso académico 2023/2024. Directores/as: Rebeca Goya Esteban
Palabras clave
Citación
Colecciones
Excepto si se señala otra cosa, la licencia del ítem se describe como Creative Commons Atribución-CompartirIgual 4.0 Internacional